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Bibliografia [1] M. Sanjeev Arulampalam, S. Maskell, N. Gordon and T.Clapp A Tutorial on Particle Filter for Ondine Nonlinear/Non-Gaussian Bayesian Tracking.

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Bibliografia

[1] M. Sanjeev Arulampalam, S. Maskell, N. Gordon and T.Clapp

A Tutorial on Particle Filter for Ondine Nonlinear/Non-Gaussian Bayesian Tracking.

IEEE Transactions on signal processing, Vol 50, No 2, Februray (2002).

[2] A. Doucet, J.F.G. de Freitas and N.J. Gordon

An introduction to Sequential Monte Carlo Methods .

Springer-Verlag (2001).

[3] G. Welch and G. Bishop

An introduction to the Kalman Filter technical report.

University of North Carolina at Chapel Hill, Chapel Hill, NC 27599-3175 (2001).

[4] R. E. Kalman

A new approach to linear filtering and prediction problems.

Journal of Basic Engeneering, (1960).

[5] Y. C. Ho and R. C. K. Lee

A Bayesian approach to problems in stocastich estimation and control.

IEEE Trans. Automat. Contr.; (1964).

[6] N. Gordon, D. Salmond, and C. Ewing

A novel approach To non linear non Gaussian Bayesian estimation.

In IEEE Proceeding, part F, pp 107-113, (1993).

[7] M.Isard and A. Blake

Countour tracking by stochastic propagation of conditional density.

In Proc. of European Conference on Computer Vision (1996).

[8] K. Kanazawa, D.Koller and S. Russel (1995)

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[9] A.Doucet

On sequential simulation-based methods for Bayesian filtering.

Technical report for Department of Engeneering, University of Cambrige (1998).

[10] M.Bolic

Theory and Implementation of Particle Filter.

Miodrag Bolic Assistant Professor School of Informatic Technology and Engineering Univesity Ottawa.

[11] Y. Bar-Shalom and X. R. Li

Estimation and Tracking: Priciples, Techniques and software.

Norwell, MA:Artech House, (1993).

[12] M. F. Bugallo, S. Xu and P. M. Djuriè

Performance comparision of EKF and Particle Filtering methods for maneuvering target.

Digital Signal Processing (2006), dai:10.1016/j dsp 2006.10.001

[13] M. S. Arumlampalam, N. Gordon, M. Orton and B. Ristic.

A variabile structure multiple model Particle Filter for GMTI Tracking.

ISIF (2002), pp 927-934.

[14] M Y. Bar-Shalom and X. R. Li

Multitarget-Multisensor Tracking: Principle and Techniques.

ISBN, 0-9648312-01 (1995).

[15] L. Campo, P Mookerje and Y. Bar-Shalom

State Estimation for Systems with sojourn-time-dependent Markov model switching.

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[16] X. Wang, S. Challa and R. Evans

Gating techniques for maneuvering target tracking in clutter.

Transactions on Aerospace and Electronic Systems, vol. 38, pp. 1087-1097, no. 3, July (2002).

[17] T.Kirubarajan and Y. Bar. Shalom

Probabilistic Data Association Techniques for tracking in clutter.

Proceeding of the IEEE, vol. 92, pp 536-556, no. 3, March (2004).

[18] N. Gordon

A hybrid boostrap filter for target tracking in clutter.

IEEE Transactions on Aerospace and Electronic Systems, vol. 33, pp. 353-368, no. 1 January (1997).

[19] M Y. Bar-Shalom and X. R. Li

Multitarget-Multisensor Tracking: Principle and Techniques.

ISBN (1993).

[20] W. Gilks and C. Berzuini

Following a moving target-Monte Carlo interference for dynamic Bayesian models.

Journal of the Royal Statistical Society B, 63, 1 (2001), pp 127-146.

[21] M. Hürzeler and H. Künsch

Monte Carlo approximations for general state space models.

Journal of computational and Graphical Statistics, 7, 2 (1998), 175-193.

[22] C. Musso N. Oudjane and F.Le Gland Improving regularised particle filters.

Sequential Monte Carlo Methods in Particle, New York: Springer-Verlag, (2001).

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[23] T.Kirubarajan and Y. Bar-Shalom

Tracking Evasive Move- Stop-Move Tragets with a GMTI Radar Using a VS-IMM Estimator.

IEEE Transactions on Aerospace and Electronic Systems, vol. 39, no.3, July (2003), pp. 1098-1103..

[24] M.R.Morelande and S. Challa

Manoeuvering target tracking in clutter using particle filter.

IEEE Transactions on Aerospace and Electronic Systems, vol. 41, no.1, January (2005), pp.252-270..

[25] S.McGinnity and G. W. Irwin

Multiple model boostrap filter for Maneuvering target tracking.

IEEE Transactions on Aerospace and Electronic Systems, vol. 36, no.3, July (2000), pp. 1006-1012.

[26] R. Karlson and N. Bergman

Auxiliary particle filters for tracking a maneuvering target.

Proceeding of the 39th Conference on Decision and Control, Sydney Australia, pp. 3891-3895, December (2000).

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